Precision Medicine Unit, Biomedical Data Science Center (BDSC), Lausanne University Hospital (CHUV), Lausanne, Switzerland.
Lab Anim. 2024 Oct;58(5):433-437. doi: 10.1177/00236772241276808.
The normality assumption postulates that empirical data derives from a normal (Gaussian) population. It is a pillar of inferential statistics that enables the theorization of probability functions and the computation of p-values thereof. The breach of this assumption may not impose a formal mathematical constraint on the computation of inferential outputs (e.g., p-values) but may make them inoperable and possibly lead to unethical waste of laboratory animals. Various methods, including statistical tests and qualitative visual examination, can reveal incompatibility with normality and the choice of a procedure should not be trivialized. The following minireview will provide a brief overview of diagrammatical methods and statistical tests commonly employed to evaluate congruence with normality. Special attention will be given to the potential pitfalls associated with their application. Normality is an unachievable ideal that practically never accurately describes natural variables, and detrimental consequences of non-normality may be safeguarded by using large samples. Therefore, the very concept of preliminary normality testing is also, arguably provocatively, questioned.
常态性假设假定经验数据来自正态(高斯)总体。它是推理统计学的一个支柱,能够理论化概率函数并计算其 p 值。违反这一假设可能不会对推理输出(例如 p 值)的计算施加正式的数学限制,但可能使它们无法操作,并可能导致实验室动物的不道德浪费。各种方法,包括统计检验和定性视觉检查,可以揭示与正态性的不兼容性,并且不应轻视程序的选择。以下简要回顾将提供常用的图表方法和统计检验来评估与正态性的一致性的简要概述。特别注意与它们的应用相关的潜在陷阱。正态性是一个无法实现的理想,实际上几乎从不准确地描述自然变量,并且通过使用大样本可以保护非正态性的不利后果。因此,可以说,对初步正态性检验的概念也提出了质疑。